Neuroimage Analysis Methods and Artificial Intelligence Techniques for Reliable Biomarkers and Accurate Diagnosis of Schizophrenia: Achievements Made by Chinese Scholars Around the Past Decade.

IF 5.3 1区 医学 Q1 PSYCHIATRY Schizophrenia Bulletin Pub Date : 2024-07-09 DOI:10.1093/schbul/sbae110
Yuhui Du, Ju Niu, Ying Xing, Bang Li, Vince D Calhoun
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Abstract

Background and hypothesis: Schizophrenia (SZ) is characterized by significant cognitive and behavioral disruptions. Neuroimaging techniques, particularly magnetic resonance imaging (MRI), have been widely utilized to investigate biomarkers of SZ, distinguish SZ from healthy conditions or other mental disorders, and explore biotypes within SZ or across SZ and other mental disorders, which aim to promote the accurate diagnosis of SZ. In China, research on SZ using MRI has grown considerably in recent years.

Study design: The article reviews advanced neuroimaging and artificial intelligence (AI) methods using single-modal or multimodal MRI to reveal the mechanism of SZ and promote accurate diagnosis of SZ, with a particular emphasis on the achievements made by Chinese scholars around the past decade.

Study results: Our article focuses on the methods for capturing subtle brain functional and structural properties from the high-dimensional MRI data, the multimodal fusion and feature selection methods for obtaining important and sparse neuroimaging features, the supervised statistical analysis and classification for distinguishing disorders, and the unsupervised clustering and semi-supervised learning methods for identifying neuroimage-based biotypes. Crucially, our article highlights the characteristics of each method and underscores the interconnections among various approaches regarding biomarker extraction and neuroimage-based diagnosis, which is beneficial not only for comprehending SZ but also for exploring other mental disorders.

Conclusions: We offer a valuable review of advanced neuroimage analysis and AI methods primarily focused on SZ research by Chinese scholars, aiming to promote the diagnosis, treatment, and prevention of SZ, as well as other mental disorders, both within China and internationally.

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神经影像分析方法和人工智能技术用于精神分裂症的可靠生物标记和准确诊断:近十年来中国学者取得的成就》。
背景与假设:精神分裂症(SZ)以严重的认知和行为障碍为特征。神经影像学技术,尤其是磁共振成像(MRI),已被广泛应用于研究精神分裂症的生物标志物,区分精神分裂症与健康状况或其他精神障碍,探索精神分裂症内部或精神分裂症与其他精神障碍之间的生物类型,从而促进对精神分裂症的准确诊断。在中国,近年来利用核磁共振成像对SZ的研究有了长足的发展:研究设计:文章回顾了利用单模态或多模态核磁共振成像技术揭示SZ发病机制、促进SZ准确诊断的先进神经影像学和人工智能(AI)方法,特别强调了中国学者近十年来所取得的成果:研究成果:本文主要介绍了从高维MRI数据中捕捉细微脑功能和结构特性的方法、获取重要和稀疏神经影像特征的多模态融合和特征选择方法、区分疾病的监督统计分析和分类方法,以及识别基于神经影像的生物分型的无监督聚类和半监督学习方法。最重要的是,我们的文章突出了每种方法的特点,强调了生物标记物提取和基于神经影像诊断的各种方法之间的相互联系,这不仅有利于理解 SZ,也有利于探索其他精神疾病:我们对国内学者主要针对 SZ 研究的先进神经影像分析和人工智能方法进行了有价值的综述,旨在促进国内外对 SZ 以及其他精神障碍的诊断、治疗和预防。
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来源期刊
Schizophrenia Bulletin
Schizophrenia Bulletin 医学-精神病学
CiteScore
11.40
自引率
6.10%
发文量
163
审稿时长
4-8 weeks
期刊介绍: Schizophrenia Bulletin seeks to review recent developments and empirically based hypotheses regarding the etiology and treatment of schizophrenia. We view the field as broad and deep, and will publish new knowledge ranging from the molecular basis to social and cultural factors. We will give new emphasis to translational reports which simultaneously highlight basic neurobiological mechanisms and clinical manifestations. Some of the Bulletin content is invited as special features or manuscripts organized as a theme by special guest editors. Most pages of the Bulletin are devoted to unsolicited manuscripts of high quality that report original data or where we can provide a special venue for a major study or workshop report. Supplement issues are sometimes provided for manuscripts reporting from a recent conference.
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